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Estimating landslide susceptibility areas considering the uncertainty inherent in modeling methods

Cited 31 time in Web of Science Cited 34 time in Scopus
Authors

Kim, Ho Gul; Lee, Dong Kun; Park, Chan; Ahn, Yoonjung; Kil, Sung-Ho; Sung, Sunyong; Biging, Gregory S.

Issue Date
2018-11
Publisher
Springer Verlag
Citation
Stochastic Environmental Research and Risk Assessment, Vol.32 No.11, pp.2987-3019
Abstract
Landslides are one of the most dangerous types of natural disasters, and damage due to landslides has been increasing in certain regions of the world because of increased precipitation. Policy decision makers require reliable information that can be used to establish spatial adaptation plans to protect people from landslide hazards. Researchers presently identify areas susceptible to landslides using various spatial distribution models. However, such data are associated with a high amount of uncertainty. This study focuses on quantifying the uncertainty of several spatial distribution models and identifying the effectiveness of various ensemble methods that can be used to provide reliable information to support policy decisions. The area of study was Inje-gun, Republic of Korea. Ten models were selected to assess landslide susceptibility. Moreover, five ensemble methods were selected for the aggregated results of the 10models. The uncertainty was quantified using the coefficient of variation and the uncertainty map we developed revealed areas with strongly differing values among single models. A matrix map was created using an ensemble map and a coefficient of variation map. Using matrix analysis, we identified the areas that are most susceptible to landslides according to the ensemble model with a low uncertainty. Thus, the ensemble model can be a useful tool for supporting decision makers. The framework of this study can also be employed to support the establishment of landslide adaptation plans in other areas of the Republic of Korea and in other countries.
ISSN
1436-3240
Language
English
URI
https://hdl.handle.net/10371/149786
DOI
https://doi.org/10.1007/s00477-018-1609-y
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